An Efficient Hybrid Genetic Algorithm for the Quadratic Traveling Salesman Problem

Quang Anh Pham, H. Lau, Minh Hoàng Hà, Lam Vu
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Abstract

The traveling salesman problem (TSP) is the most well-known problem in combinatorial optimization which has been studied for many decades. This paper focuses on dealing with one of the most difficult TSP variants named the quadratic traveling salesman problem (QTSP) that has numerous planning applications in robotics and bioinformatics. The goal of QTSP is similar to TSP which finds a cycle visiting all nodes exactly once with minimum total costs. However, the costs in QTSP are associated with three vertices traversed in succession (instead of two like in TSP). This leads to a quadratic objective function that is much harder to solve. To efficiently solve the problem, we propose a hybrid genetic algorithm including a local search procedure for intensification and a new mutation operator for diversification. The local search is composed of a restricted double-bridge move (a variant of 4-Opt); and we show the neighborhood can be evaluated in O(n^2), the same complexity as for the classical TSP. The mutation phase is inspired by a ruin-and-recreate scheme. Experimental results conducted on benchmark instances show that our method significantly outperforms state-of-the-art algorithms in terms of solution quality. Out of 800 considered instances, it finds 437 new best-known solutions.
二次型旅行商问题的一种高效混合遗传算法
旅行商问题(TSP)是组合优化中最著名的问题,已经被研究了几十年。本文重点研究了在机器人和生物信息学中有许多规划应用的二次旅行推销员问题(quadratic traveling salesman problem, QTSP)。QTSP的目标类似于TSP,它找到一个以最小总成本访问所有节点的周期。然而,QTSP中的成本与连续遍历的三个顶点相关(而不是像TSP中的两个)。这导致二次目标函数更难求解。为了有效地解决这一问题,我们提出了一种混合遗传算法,其中包括局部搜索过程的强化和新的变异算子的多样化。局部搜索由受限双桥移动(4-Opt的一种变体)组成;我们证明了邻域可以在O(n^2)内求值,与经典TSP的复杂度相同。突变阶段的灵感来自于“破坏-重建”方案。在基准实例上进行的实验结果表明,我们的方法在解决质量方面明显优于最先进的算法。在考虑的800个实例中,它发现了437个新的最知名的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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